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Activity Number: 348 - Investigations into the Teaching and Learning of Statistics
Type: Contributed
Date/Time: Tuesday, July 31, 2018 : 10:30 AM to 12:20 PM
Sponsor: Section on Statistical Education
Abstract #328488 Presentation
Title: Ensemble Learning for Estimating Individualized Treatment Effects in Student Success Studies
Author(s): Richard Levine* and Joshua Beemer and Juanjuan Fan
Companies: San Diego State University and San Diego State University and San Diego State University
Keywords: educational data mining; personalized learning; machine learning; supplemental instruction
Abstract:

Student success efficacy studies are aimed at assessing instructional practices and learning environments by evaluating the success of and characterizing student subgroups that may benefit from such modalities. We propose an ensemble learning approach to perform these analytics tasks with specific focus on estimating individualized treatment effects (ITE). ITE are a measure from the personalized medicine literature that can, for each student, quantify the impact of the intervention strategy on student performance, even though the given student either did or did not experience this intervention (i.e. is either in the treatment group or in the control group). We illustrate our learning analytics methods in the study of a supplemental instruction component for a large enrollment introductory statistics course recognized as a curriculum bottleneck at San Diego State University. As part of this application, we show how the ensemble estimate of the ITE may be used to assess the pedagogical reform (supplemental instruction), advise students into supplemental instruction at the beginning of the course, and quantify the impact of the supplemental instruction component on at-risk subgroups.


Authors who are presenting talks have a * after their name.

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